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\title{Daily progress report 3}
\author{Hylke Buisman}

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\section{Introduction}
This document serves to report the progress that was made in the beginning of the second week.
This will mainly consist of a small abstract from my Wiki\footnote{http://hbuisman.wetpaint.com/}, which contains more detailed and up to date info on my progress. 
The next sections present a small logbook and
a short summary of my activities.

\section{Logbook}

\begin{table*}[h]
	\centering
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		\textbf{Day} & \textbf{Hours} & \textbf{Activities}\\
		\hline \\
		June 11 & 8 & Worked on naive dependencies + clusters + min dependency\\
		June 12 & 4 & Continued naive dependencies + min dependency (Rest of day Fulbright meeting)\\
		June 13 & 8 & Meeting Bert + Causal paths + documentation\\
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\section{Summary}
These days I mainly worked on adapting and designing the algorithm according to our new ideas.
That is, instead of starting the algorithm with a breadth first search, the algorithm will be built up
of several iterations.
While working on the algorithm, I looked at the results and decided it might be interesting to be able to
distinguish clusters. This clusters can bring more structure in the bag of naive dependencies. 
Additionally I worked on implementing the ternary dependency recognition. The presence of the 
bag of naive dependencies can prune the search for ternary dependencies.
Ternary dependencies are currently checked using the GARP3 engine, however at the moment
this check is given too much information regarding the model. This still has to be fixed:
I will have to contact Floris about this.

Furthermore I discussed with Bert how to find good causal paths and models, 
and how clusters would play a role in this. I also documented what the characteristics of a good model are. 
This can be used for heuristic/pruning or evaluation.

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